Remote sensing continues to be an invaluable tool in earthquake damage assessments and emergency response. This study evaluates the effectiveness of multilayer feedforward neural networks, radial basis neural networks, and Random Forests in detecting earthquake damage caused by the 2010 Port-au-Prince, Haiti 7.0 moment magnitude (Mw) event. Additionally, textural and structural features including entropy, dissimilarity, Laplacian of Gaussian, and rectangular fit are investigated as key variables for high spatial resolution imagery classification. Our findings show that each of the algorithms achieved nearly a 90% kernel density match using the United Nations Operational Satellite Applications Programme (UNITAR/UNOSAT) dataset as validation....
With the recent tremendous improvements in the spatial, spectral, and temporal resolutions of remote...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
Object-based approaches in the segmentation and classification of remotely sensed images yield more ...
The accurate and quick derivation of the distribution of damaged building must be considered essenti...
In the second half of the 20th and beginning of the 21st century the amount of natural disasters has...
This work proposes methodologies aimed at evaluating the sensitivity of optical and synthetic apert...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
Building damage maps can be generated from either optical or Light Detection and Ranging (Lidar) dat...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
Very High Resolution (VHR) remote sensing optical imagery is a huge source of information that can b...
Natural disasters ravage the world's cities, valleys, and shores on a monthly basis. Having precise ...
Previous applications of machine learning in remote sensing for the identification of broken buildin...
With the recent tremendous improvements in the spatial, spectral, and temporal resolutions of remote...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
Object-based approaches in the segmentation and classification of remotely sensed images yield more ...
The accurate and quick derivation of the distribution of damaged building must be considered essenti...
In the second half of the 20th and beginning of the 21st century the amount of natural disasters has...
This work proposes methodologies aimed at evaluating the sensitivity of optical and synthetic apert...
In recent years, remote-sensing (RS) technologies have been used together with image processing and ...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
Building damage maps can be generated from either optical or Light Detection and Ranging (Lidar) dat...
Remotely sensed data can provide the basis for timely and efficient building damage maps that are of...
Automated classification of building damage in remote sensing images enables the rapid and spatially...
Very High Resolution (VHR) remote sensing optical imagery is a huge source of information that can b...
Natural disasters ravage the world's cities, valleys, and shores on a monthly basis. Having precise ...
Previous applications of machine learning in remote sensing for the identification of broken buildin...
With the recent tremendous improvements in the spatial, spectral, and temporal resolutions of remote...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
Object-based approaches in the segmentation and classification of remotely sensed images yield more ...